AI RESEARCH

Adaptive multi-fidelity optimization with fast learning rates

arXiv CS.LG

ArXi:2604.16239v1 Announce Type: cross In multi-fidelity optimization, biased approximations of varying costs of the target function are available. This paper studies the problem of optimizing a locally smooth function with a limited budget, where the learner has to make a tradeoff between the cost and the bias of these approximations. We first prove lower bounds for the simple regret under different assumptions on the fidelities, based on a cost-to-bias function.